Advancing Early Leukemia Diagnostics: A Comprehensive Study Incorporating Image Processing and Transfer Learning

Rezaul Haque, Abdullah Al Sakib, Md Forhad Hossain, Fahadul Islam, Ferdaus Ibne Aziz, Md Redwan Ahmed, Somasundar Kannan, Ali Rohan, Md Junayed Hasan
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Abstract

Disease recognition has been revolutionized by autonomous systems in the rapidly developing field of medical technology. A crucial aspect of diagnosis involves the visual assessment and enumeration of white blood cells in microscopic peripheral blood smears. This practice yields invaluable insights into a patient’s health, enabling the identification of conditions of blood malignancies such as leukemia. Early identification of leukemia subtypes is paramount for tailoring appropriate therapeutic interventions and enhancing patient survival rates. However, traditional diagnostic techniques, which depend on visual assessment, are arbitrary, laborious, and prone to errors. The advent of ML technologies offers a promising avenue for more accurate and efficient leukemia classification. In this study, we introduced a novel approach to leukemia classification by integrating advanced image processing, diverse dataset utilization, and sophisticated feature extraction techniques, coupled with the development of TL models. Focused on improving accuracy of previous studies, our approach utilized Kaggle datasets for binary and multiclass classifications. Extensive image processing involved a novel LoGMH method, complemented by diverse augmentation techniques. Feature extraction employed DCNN, with subsequent utilization of extracted features to train various ML and TL models. Rigorous evaluation using traditional metrics revealed Inception-ResNet’s superior performance, surpassing other models with F1 scores of 96.07% and 95.89% for binary and multiclass classification, respectively. Our results notably surpass previous research, particularly in cases involving a higher number of classes. These findings promise to influence clinical decision support systems, guide future research, and potentially revolutionize cancer diagnostics beyond leukemia, impacting broader medical imaging and oncology domains.
推进早期白血病诊断:结合图像处理和迁移学习的综合研究
在快速发展的医疗技术领域,自主系统为疾病识别带来了革命性的变化。诊断的一个重要方面是对显微外周血涂片中的白细胞进行目测和计数。这种做法能为了解病人的健康状况提供宝贵的信息,从而识别血液恶性肿瘤(如白血病)的病情。早期识别白血病亚型对于制定适当的治疗干预措施和提高患者存活率至关重要。然而,依赖视觉评估的传统诊断技术随意性大、费力且容易出错。人工智能技术的出现为更准确、更高效地进行白血病分类提供了一条大有可为的途径。在这项研究中,我们通过整合先进的图像处理、多样化的数据集利用、复杂的特征提取技术以及 TL 模型的开发,引入了一种新的白血病分类方法。为了提高以往研究的准确性,我们的方法利用 Kaggle 数据集进行二元和多元分类。广泛的图像处理涉及一种新颖的 LoGMH 方法,并辅以多种增强技术。特征提取采用 DCNN,随后利用提取的特征训练各种 ML 和 TL 模型。使用传统指标进行的严格评估显示,Inception-ResNet 的性能优越,在二分类和多分类方面的 F1 分数分别为 96.07% 和 95.89%,超过了其他模型。我们的结果明显超过了之前的研究,尤其是在涉及较多类别的情况下。这些发现有望影响临床决策支持系统,指导未来的研究,并有可能彻底改变白血病以外的癌症诊断,影响更广泛的医学成像和肿瘤学领域。
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CiteScore
1.70
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